Abstract

This paper presents an efficient shape-based object detection method based on Distance Transforms and describes its use for real-time vision on-board vehicles. The method uses a template hierarchy to capture the variety of object shapes; efficient hierarchies can be generated offline for given shape distributions using stochastic optimization techniques (i.e. simulated annealing). Online, matching involves a simultaneous coarse-to-fine approach over the shape hierarchy and over the transformation parameters. Very large speed-up factors are typically obtained when comparing this approach with the equivalent brute-force formulation; we have measured gains of several orders of magnitudes. We present experimental results on the real-time detection of traffic signs and pedestrians from a moving vehicle. Because of the highly time sensitive nature of these vision tasks, we also discuss some hardware-specific implementations of the proposed method as far as SIMD parallelism is concerned.

Keywords

Computer scienceObject detectionSIMDComputer visionTransformation (genetics)Object (grammar)ImplementationArtificial intelligenceReal-time computingParallel computingPattern recognition (psychology)

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Publication Info

Year
1999
Type
article
Pages
87-93 vol.1
Citations
625
Access
Closed

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Dariu M. Gavrila, V. Philomin (1999). Real-time object detection for "smart" vehicles. , 87-93 vol.1. https://doi.org/10.1109/iccv.1999.791202

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DOI
10.1109/iccv.1999.791202